# -*- coding: utf-8 -*-
# Copyright 2025 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
from collections import OrderedDict
import logging as std_logging
import re
from typing import (
    AsyncIterable,
    AsyncIterator,
    Awaitable,
    Callable,
    Dict,
    Mapping,
    MutableMapping,
    MutableSequence,
    Optional,
    Sequence,
    Tuple,
    Type,
    Union,
)

from google.api_core import exceptions as core_exceptions
from google.api_core import gapic_v1
from google.api_core import retry_async as retries
from google.api_core.client_options import ClientOptions
from google.auth import credentials as ga_credentials  # type: ignore
from google.oauth2 import service_account  # type: ignore
import google.protobuf

from google.ai.generativelanguage_v1alpha import gapic_version as package_version

try:
    OptionalRetry = Union[retries.AsyncRetry, gapic_v1.method._MethodDefault, None]
except AttributeError:  # pragma: NO COVER
    OptionalRetry = Union[retries.AsyncRetry, object, None]  # type: ignore

from google.longrunning import operations_pb2  # type: ignore

from google.ai.generativelanguage_v1alpha.types import generative_service, safety
from google.ai.generativelanguage_v1alpha.types import content
from google.ai.generativelanguage_v1alpha.types import content as gag_content

from .client import GenerativeServiceClient
from .transports.base import DEFAULT_CLIENT_INFO, GenerativeServiceTransport
from .transports.grpc_asyncio import GenerativeServiceGrpcAsyncIOTransport

try:
    from google.api_core import client_logging  # type: ignore

    CLIENT_LOGGING_SUPPORTED = True  # pragma: NO COVER
except ImportError:  # pragma: NO COVER
    CLIENT_LOGGING_SUPPORTED = False

_LOGGER = std_logging.getLogger(__name__)


class GenerativeServiceAsyncClient:
    """API for using Large Models that generate multimodal content
    and have additional capabilities beyond text generation.
    """

    _client: GenerativeServiceClient

    # Copy defaults from the synchronous client for use here.
    # Note: DEFAULT_ENDPOINT is deprecated. Use _DEFAULT_ENDPOINT_TEMPLATE instead.
    DEFAULT_ENDPOINT = GenerativeServiceClient.DEFAULT_ENDPOINT
    DEFAULT_MTLS_ENDPOINT = GenerativeServiceClient.DEFAULT_MTLS_ENDPOINT
    _DEFAULT_ENDPOINT_TEMPLATE = GenerativeServiceClient._DEFAULT_ENDPOINT_TEMPLATE
    _DEFAULT_UNIVERSE = GenerativeServiceClient._DEFAULT_UNIVERSE

    cached_content_path = staticmethod(GenerativeServiceClient.cached_content_path)
    parse_cached_content_path = staticmethod(
        GenerativeServiceClient.parse_cached_content_path
    )
    model_path = staticmethod(GenerativeServiceClient.model_path)
    parse_model_path = staticmethod(GenerativeServiceClient.parse_model_path)
    common_billing_account_path = staticmethod(
        GenerativeServiceClient.common_billing_account_path
    )
    parse_common_billing_account_path = staticmethod(
        GenerativeServiceClient.parse_common_billing_account_path
    )
    common_folder_path = staticmethod(GenerativeServiceClient.common_folder_path)
    parse_common_folder_path = staticmethod(
        GenerativeServiceClient.parse_common_folder_path
    )
    common_organization_path = staticmethod(
        GenerativeServiceClient.common_organization_path
    )
    parse_common_organization_path = staticmethod(
        GenerativeServiceClient.parse_common_organization_path
    )
    common_project_path = staticmethod(GenerativeServiceClient.common_project_path)
    parse_common_project_path = staticmethod(
        GenerativeServiceClient.parse_common_project_path
    )
    common_location_path = staticmethod(GenerativeServiceClient.common_location_path)
    parse_common_location_path = staticmethod(
        GenerativeServiceClient.parse_common_location_path
    )

    @classmethod
    def from_service_account_info(cls, info: dict, *args, **kwargs):
        """Creates an instance of this client using the provided credentials
            info.

        Args:
            info (dict): The service account private key info.
            args: Additional arguments to pass to the constructor.
            kwargs: Additional arguments to pass to the constructor.

        Returns:
            GenerativeServiceAsyncClient: The constructed client.
        """
        return GenerativeServiceClient.from_service_account_info.__func__(GenerativeServiceAsyncClient, info, *args, **kwargs)  # type: ignore

    @classmethod
    def from_service_account_file(cls, filename: str, *args, **kwargs):
        """Creates an instance of this client using the provided credentials
            file.

        Args:
            filename (str): The path to the service account private key json
                file.
            args: Additional arguments to pass to the constructor.
            kwargs: Additional arguments to pass to the constructor.

        Returns:
            GenerativeServiceAsyncClient: The constructed client.
        """
        return GenerativeServiceClient.from_service_account_file.__func__(GenerativeServiceAsyncClient, filename, *args, **kwargs)  # type: ignore

    from_service_account_json = from_service_account_file

    @classmethod
    def get_mtls_endpoint_and_cert_source(
        cls, client_options: Optional[ClientOptions] = None
    ):
        """Return the API endpoint and client cert source for mutual TLS.

        The client cert source is determined in the following order:
        (1) if `GOOGLE_API_USE_CLIENT_CERTIFICATE` environment variable is not "true", the
        client cert source is None.
        (2) if `client_options.client_cert_source` is provided, use the provided one; if the
        default client cert source exists, use the default one; otherwise the client cert
        source is None.

        The API endpoint is determined in the following order:
        (1) if `client_options.api_endpoint` if provided, use the provided one.
        (2) if `GOOGLE_API_USE_CLIENT_CERTIFICATE` environment variable is "always", use the
        default mTLS endpoint; if the environment variable is "never", use the default API
        endpoint; otherwise if client cert source exists, use the default mTLS endpoint, otherwise
        use the default API endpoint.

        More details can be found at https://google.aip.dev/auth/4114.

        Args:
            client_options (google.api_core.client_options.ClientOptions): Custom options for the
                client. Only the `api_endpoint` and `client_cert_source` properties may be used
                in this method.

        Returns:
            Tuple[str, Callable[[], Tuple[bytes, bytes]]]: returns the API endpoint and the
                client cert source to use.

        Raises:
            google.auth.exceptions.MutualTLSChannelError: If any errors happen.
        """
        return GenerativeServiceClient.get_mtls_endpoint_and_cert_source(client_options)  # type: ignore

    @property
    def transport(self) -> GenerativeServiceTransport:
        """Returns the transport used by the client instance.

        Returns:
            GenerativeServiceTransport: The transport used by the client instance.
        """
        return self._client.transport

    @property
    def api_endpoint(self):
        """Return the API endpoint used by the client instance.

        Returns:
            str: The API endpoint used by the client instance.
        """
        return self._client._api_endpoint

    @property
    def universe_domain(self) -> str:
        """Return the universe domain used by the client instance.

        Returns:
            str: The universe domain used
                by the client instance.
        """
        return self._client._universe_domain

    get_transport_class = GenerativeServiceClient.get_transport_class

    def __init__(
        self,
        *,
        credentials: Optional[ga_credentials.Credentials] = None,
        transport: Optional[
            Union[
                str,
                GenerativeServiceTransport,
                Callable[..., GenerativeServiceTransport],
            ]
        ] = "grpc_asyncio",
        client_options: Optional[ClientOptions] = None,
        client_info: gapic_v1.client_info.ClientInfo = DEFAULT_CLIENT_INFO,
    ) -> None:
        """Instantiates the generative service async client.

        Args:
            credentials (Optional[google.auth.credentials.Credentials]): The
                authorization credentials to attach to requests. These
                credentials identify the application to the service; if none
                are specified, the client will attempt to ascertain the
                credentials from the environment.
            transport (Optional[Union[str,GenerativeServiceTransport,Callable[..., GenerativeServiceTransport]]]):
                The transport to use, or a Callable that constructs and returns a new transport to use.
                If a Callable is given, it will be called with the same set of initialization
                arguments as used in the GenerativeServiceTransport constructor.
                If set to None, a transport is chosen automatically.
            client_options (Optional[Union[google.api_core.client_options.ClientOptions, dict]]):
                Custom options for the client.

                1. The ``api_endpoint`` property can be used to override the
                default endpoint provided by the client when ``transport`` is
                not explicitly provided. Only if this property is not set and
                ``transport`` was not explicitly provided, the endpoint is
                determined by the GOOGLE_API_USE_MTLS_ENDPOINT environment
                variable, which have one of the following values:
                "always" (always use the default mTLS endpoint), "never" (always
                use the default regular endpoint) and "auto" (auto-switch to the
                default mTLS endpoint if client certificate is present; this is
                the default value).

                2. If the GOOGLE_API_USE_CLIENT_CERTIFICATE environment variable
                is "true", then the ``client_cert_source`` property can be used
                to provide a client certificate for mTLS transport. If
                not provided, the default SSL client certificate will be used if
                present. If GOOGLE_API_USE_CLIENT_CERTIFICATE is "false" or not
                set, no client certificate will be used.

                3. The ``universe_domain`` property can be used to override the
                default "googleapis.com" universe. Note that ``api_endpoint``
                property still takes precedence; and ``universe_domain`` is
                currently not supported for mTLS.

            client_info (google.api_core.gapic_v1.client_info.ClientInfo):
                The client info used to send a user-agent string along with
                API requests. If ``None``, then default info will be used.
                Generally, you only need to set this if you're developing
                your own client library.

        Raises:
            google.auth.exceptions.MutualTlsChannelError: If mutual TLS transport
                creation failed for any reason.
        """
        self._client = GenerativeServiceClient(
            credentials=credentials,
            transport=transport,
            client_options=client_options,
            client_info=client_info,
        )

        if CLIENT_LOGGING_SUPPORTED and _LOGGER.isEnabledFor(
            std_logging.DEBUG
        ):  # pragma: NO COVER
            _LOGGER.debug(
                "Created client `google.ai.generativelanguage_v1alpha.GenerativeServiceAsyncClient`.",
                extra={
                    "serviceName": "google.ai.generativelanguage.v1alpha.GenerativeService",
                    "universeDomain": getattr(
                        self._client._transport._credentials, "universe_domain", ""
                    ),
                    "credentialsType": f"{type(self._client._transport._credentials).__module__}.{type(self._client._transport._credentials).__qualname__}",
                    "credentialsInfo": getattr(
                        self.transport._credentials, "get_cred_info", lambda: None
                    )(),
                }
                if hasattr(self._client._transport, "_credentials")
                else {
                    "serviceName": "google.ai.generativelanguage.v1alpha.GenerativeService",
                    "credentialsType": None,
                },
            )

    async def generate_content(
        self,
        request: Optional[
            Union[generative_service.GenerateContentRequest, dict]
        ] = None,
        *,
        model: Optional[str] = None,
        contents: Optional[MutableSequence[content.Content]] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> generative_service.GenerateContentResponse:
        r"""Generates a model response given an input
        ``GenerateContentRequest``. Refer to the `text generation
        guide <https://ai.google.dev/gemini-api/docs/text-generation>`__
        for detailed usage information. Input capabilities differ
        between models, including tuned models. Refer to the `model
        guide <https://ai.google.dev/gemini-api/docs/models/gemini>`__
        and `tuning
        guide <https://ai.google.dev/gemini-api/docs/model-tuning>`__
        for details.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_generate_content():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                request = generativelanguage_v1alpha.GenerateContentRequest(
                    model="model_value",
                )

                # Make the request
                response = await client.generate_content(request=request)

                # Handle the response
                print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.GenerateContentRequest, dict]]):
                The request object. Request to generate a completion from
                the model.
            model (:class:`str`):
                Required. The name of the ``Model`` to use for
                generating the completion.

                Format: ``models/{model}``.

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            contents (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.Content]`):
                Required. The content of the current conversation with
                the model.

                For single-turn queries, this is a single instance. For
                multi-turn queries like
                `chat <https://ai.google.dev/gemini-api/docs/text-generation#chat>`__,
                this is a repeated field that contains the conversation
                history and the latest request.

                This corresponds to the ``contents`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            google.ai.generativelanguage_v1alpha.types.GenerateContentResponse:
                Response from the model supporting multiple candidate
                responses.

                   Safety ratings and content filtering are reported for
                   both prompt in
                   GenerateContentResponse.prompt_feedback and for each
                   candidate in finish_reason and in safety_ratings. The
                   API: - Returns either all requested candidates or
                   none of them - Returns no candidates at all only if
                   there was something wrong with the prompt (check
                   prompt_feedback) - Reports feedback on each candidate
                   in finish_reason and safety_ratings.

        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, contents]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.GenerateContentRequest):
            request = generative_service.GenerateContentRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if contents:
            request.contents.extend(contents)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.generate_content
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def generate_answer(
        self,
        request: Optional[Union[generative_service.GenerateAnswerRequest, dict]] = None,
        *,
        model: Optional[str] = None,
        contents: Optional[MutableSequence[content.Content]] = None,
        safety_settings: Optional[MutableSequence[safety.SafetySetting]] = None,
        answer_style: Optional[
            generative_service.GenerateAnswerRequest.AnswerStyle
        ] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> generative_service.GenerateAnswerResponse:
        r"""Generates a grounded answer from the model given an input
        ``GenerateAnswerRequest``.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_generate_answer():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                request = generativelanguage_v1alpha.GenerateAnswerRequest(
                    model="model_value",
                    answer_style="VERBOSE",
                )

                # Make the request
                response = await client.generate_answer(request=request)

                # Handle the response
                print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.GenerateAnswerRequest, dict]]):
                The request object. Request to generate a grounded answer from the
                ``Model``.
            model (:class:`str`):
                Required. The name of the ``Model`` to use for
                generating the grounded response.

                Format: ``model=models/{model}``.

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            contents (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.Content]`):
                Required. The content of the current conversation with
                the ``Model``. For single-turn queries, this is a single
                question to answer. For multi-turn queries, this is a
                repeated field that contains conversation history and
                the last ``Content`` in the list containing the
                question.

                Note: ``GenerateAnswer`` only supports queries in
                English.

                This corresponds to the ``contents`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            safety_settings (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.SafetySetting]`):
                Optional. A list of unique ``SafetySetting`` instances
                for blocking unsafe content.

                This will be enforced on the
                ``GenerateAnswerRequest.contents`` and
                ``GenerateAnswerResponse.candidate``. There should not
                be more than one setting for each ``SafetyCategory``
                type. The API will block any contents and responses that
                fail to meet the thresholds set by these settings. This
                list overrides the default settings for each
                ``SafetyCategory`` specified in the safety_settings. If
                there is no ``SafetySetting`` for a given
                ``SafetyCategory`` provided in the list, the API will
                use the default safety setting for that category. Harm
                categories HARM_CATEGORY_HATE_SPEECH,
                HARM_CATEGORY_SEXUALLY_EXPLICIT,
                HARM_CATEGORY_DANGEROUS_CONTENT,
                HARM_CATEGORY_HARASSMENT are supported. Refer to the
                `guide <https://ai.google.dev/gemini-api/docs/safety-settings>`__
                for detailed information on available safety settings.
                Also refer to the `Safety
                guidance <https://ai.google.dev/gemini-api/docs/safety-guidance>`__
                to learn how to incorporate safety considerations in
                your AI applications.

                This corresponds to the ``safety_settings`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            answer_style (:class:`google.ai.generativelanguage_v1alpha.types.GenerateAnswerRequest.AnswerStyle`):
                Required. Style in which answers
                should be returned.

                This corresponds to the ``answer_style`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            google.ai.generativelanguage_v1alpha.types.GenerateAnswerResponse:
                Response from the model for a
                grounded answer.

        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, contents, safety_settings, answer_style]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.GenerateAnswerRequest):
            request = generative_service.GenerateAnswerRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if answer_style is not None:
            request.answer_style = answer_style
        if contents:
            request.contents.extend(contents)
        if safety_settings:
            request.safety_settings.extend(safety_settings)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.generate_answer
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    def stream_generate_content(
        self,
        request: Optional[
            Union[generative_service.GenerateContentRequest, dict]
        ] = None,
        *,
        model: Optional[str] = None,
        contents: Optional[MutableSequence[content.Content]] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> Awaitable[AsyncIterable[generative_service.GenerateContentResponse]]:
        r"""Generates a `streamed
        response <https://ai.google.dev/gemini-api/docs/text-generation?lang=python#generate-a-text-stream>`__
        from the model given an input ``GenerateContentRequest``.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_stream_generate_content():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                request = generativelanguage_v1alpha.GenerateContentRequest(
                    model="model_value",
                )

                # Make the request
                stream = await client.stream_generate_content(request=request)

                # Handle the response
                async for response in stream:
                    print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.GenerateContentRequest, dict]]):
                The request object. Request to generate a completion from
                the model.
            model (:class:`str`):
                Required. The name of the ``Model`` to use for
                generating the completion.

                Format: ``models/{model}``.

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            contents (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.Content]`):
                Required. The content of the current conversation with
                the model.

                For single-turn queries, this is a single instance. For
                multi-turn queries like
                `chat <https://ai.google.dev/gemini-api/docs/text-generation#chat>`__,
                this is a repeated field that contains the conversation
                history and the latest request.

                This corresponds to the ``contents`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            AsyncIterable[google.ai.generativelanguage_v1alpha.types.GenerateContentResponse]:
                Response from the model supporting multiple candidate
                responses.

                   Safety ratings and content filtering are reported for
                   both prompt in
                   GenerateContentResponse.prompt_feedback and for each
                   candidate in finish_reason and in safety_ratings. The
                   API: - Returns either all requested candidates or
                   none of them - Returns no candidates at all only if
                   there was something wrong with the prompt (check
                   prompt_feedback) - Reports feedback on each candidate
                   in finish_reason and safety_ratings.

        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, contents]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.GenerateContentRequest):
            request = generative_service.GenerateContentRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if contents:
            request.contents.extend(contents)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.stream_generate_content
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def embed_content(
        self,
        request: Optional[Union[generative_service.EmbedContentRequest, dict]] = None,
        *,
        model: Optional[str] = None,
        content: Optional[gag_content.Content] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> generative_service.EmbedContentResponse:
        r"""Generates a text embedding vector from the input ``Content``
        using the specified `Gemini Embedding
        model <https://ai.google.dev/gemini-api/docs/models/gemini#text-embedding>`__.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_embed_content():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                request = generativelanguage_v1alpha.EmbedContentRequest(
                    model="model_value",
                )

                # Make the request
                response = await client.embed_content(request=request)

                # Handle the response
                print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.EmbedContentRequest, dict]]):
                The request object. Request containing the ``Content`` for the model to
                embed.
            model (:class:`str`):
                Required. The model's resource name. This serves as an
                ID for the Model to use.

                This name should match a model name returned by the
                ``ListModels`` method.

                Format: ``models/{model}``

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            content (:class:`google.ai.generativelanguage_v1alpha.types.Content`):
                Required. The content to embed. Only the ``parts.text``
                fields will be counted.

                This corresponds to the ``content`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            google.ai.generativelanguage_v1alpha.types.EmbedContentResponse:
                The response to an EmbedContentRequest.
        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, content]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.EmbedContentRequest):
            request = generative_service.EmbedContentRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if content is not None:
            request.content = content

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.embed_content
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def batch_embed_contents(
        self,
        request: Optional[
            Union[generative_service.BatchEmbedContentsRequest, dict]
        ] = None,
        *,
        model: Optional[str] = None,
        requests: Optional[
            MutableSequence[generative_service.EmbedContentRequest]
        ] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> generative_service.BatchEmbedContentsResponse:
        r"""Generates multiple embedding vectors from the input ``Content``
        which consists of a batch of strings represented as
        ``EmbedContentRequest`` objects.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_batch_embed_contents():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                requests = generativelanguage_v1alpha.EmbedContentRequest()
                requests.model = "model_value"

                request = generativelanguage_v1alpha.BatchEmbedContentsRequest(
                    model="model_value",
                    requests=requests,
                )

                # Make the request
                response = await client.batch_embed_contents(request=request)

                # Handle the response
                print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.BatchEmbedContentsRequest, dict]]):
                The request object. Batch request to get embeddings from
                the model for a list of prompts.
            model (:class:`str`):
                Required. The model's resource name. This serves as an
                ID for the Model to use.

                This name should match a model name returned by the
                ``ListModels`` method.

                Format: ``models/{model}``

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            requests (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.EmbedContentRequest]`):
                Required. Embed requests for the batch. The model in
                each of these requests must match the model specified
                ``BatchEmbedContentsRequest.model``.

                This corresponds to the ``requests`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            google.ai.generativelanguage_v1alpha.types.BatchEmbedContentsResponse:
                The response to a BatchEmbedContentsRequest.
        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, requests]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.BatchEmbedContentsRequest):
            request = generative_service.BatchEmbedContentsRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if requests:
            request.requests.extend(requests)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.batch_embed_contents
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def count_tokens(
        self,
        request: Optional[Union[generative_service.CountTokensRequest, dict]] = None,
        *,
        model: Optional[str] = None,
        contents: Optional[MutableSequence[content.Content]] = None,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> generative_service.CountTokensResponse:
        r"""Runs a model's tokenizer on input ``Content`` and returns the
        token count. Refer to the `tokens
        guide <https://ai.google.dev/gemini-api/docs/tokens>`__ to learn
        more about tokens.

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_count_tokens():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                request = generativelanguage_v1alpha.CountTokensRequest(
                    model="model_value",
                )

                # Make the request
                response = await client.count_tokens(request=request)

                # Handle the response
                print(response)

        Args:
            request (Optional[Union[google.ai.generativelanguage_v1alpha.types.CountTokensRequest, dict]]):
                The request object. Counts the number of tokens in the ``prompt`` sent to a
                model.

                Models may tokenize text differently, so each model may
                return a different ``token_count``.
            model (:class:`str`):
                Required. The model's resource name. This serves as an
                ID for the Model to use.

                This name should match a model name returned by the
                ``ListModels`` method.

                Format: ``models/{model}``

                This corresponds to the ``model`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            contents (:class:`MutableSequence[google.ai.generativelanguage_v1alpha.types.Content]`):
                Optional. The input given to the model as a prompt. This
                field is ignored when ``generate_content_request`` is
                set.

                This corresponds to the ``contents`` field
                on the ``request`` instance; if ``request`` is provided, this
                should not be set.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            google.ai.generativelanguage_v1alpha.types.CountTokensResponse:
                A response from CountTokens.

                   It returns the model's token_count for the prompt.

        """
        # Create or coerce a protobuf request object.
        # - Quick check: If we got a request object, we should *not* have
        #   gotten any keyword arguments that map to the request.
        flattened_params = [model, contents]
        has_flattened_params = (
            len([param for param in flattened_params if param is not None]) > 0
        )
        if request is not None and has_flattened_params:
            raise ValueError(
                "If the `request` argument is set, then none of "
                "the individual field arguments should be set."
            )

        # - Use the request object if provided (there's no risk of modifying the input as
        #   there are no flattened fields), or create one.
        if not isinstance(request, generative_service.CountTokensRequest):
            request = generative_service.CountTokensRequest(request)

        # If we have keyword arguments corresponding to fields on the
        # request, apply these.
        if model is not None:
            request.model = model
        if contents:
            request.contents.extend(contents)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.count_tokens
        ]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("model", request.model),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    def bidi_generate_content(
        self,
        requests: Optional[
            AsyncIterator[generative_service.BidiGenerateContentClientMessage]
        ] = None,
        *,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> Awaitable[AsyncIterable[generative_service.BidiGenerateContentServerMessage]]:
        r"""Low-Latency bidirectional streaming API that supports
        audio and video streaming inputs can produce multimodal
        output streams (audio and text).

        .. code-block:: python

            # This snippet has been automatically generated and should be regarded as a
            # code template only.
            # It will require modifications to work:
            # - It may require correct/in-range values for request initialization.
            # - It may require specifying regional endpoints when creating the service
            #   client as shown in:
            #   https://googleapis.dev/python/google-api-core/latest/client_options.html
            from google.ai import generativelanguage_v1alpha

            async def sample_bidi_generate_content():
                # Create a client
                client = generativelanguage_v1alpha.GenerativeServiceAsyncClient()

                # Initialize request argument(s)
                setup = generativelanguage_v1alpha.BidiGenerateContentSetup()
                setup.model = "model_value"

                request = generativelanguage_v1alpha.BidiGenerateContentClientMessage(
                    setup=setup,
                )

                # This method expects an iterator which contains
                # 'generativelanguage_v1alpha.BidiGenerateContentClientMessage' objects
                # Here we create a generator that yields a single `request` for
                # demonstrative purposes.
                requests = [request]

                def request_generator():
                    for request in requests:
                        yield request

                # Make the request
                stream = await client.bidi_generate_content(requests=request_generator())

                # Handle the response
                async for response in stream:
                    print(response)

        Args:
            requests (AsyncIterator[`google.ai.generativelanguage_v1alpha.types.BidiGenerateContentClientMessage`]):
                The request object AsyncIterator. Messages sent by the client in the
                BidiGenerateContent call.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors, if any,
                should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.

        Returns:
            AsyncIterable[google.ai.generativelanguage_v1alpha.types.BidiGenerateContentServerMessage]:
                Response message for the
                BidiGenerateContent call.

        """

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self._client._transport._wrapped_methods[
            self._client._transport.bidi_generate_content
        ]

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = rpc(
            requests,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def list_operations(
        self,
        request: Optional[operations_pb2.ListOperationsRequest] = None,
        *,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> operations_pb2.ListOperationsResponse:
        r"""Lists operations that match the specified filter in the request.

        Args:
            request (:class:`~.operations_pb2.ListOperationsRequest`):
                The request object. Request message for
                `ListOperations` method.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors,
                    if any, should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.
        Returns:
            ~.operations_pb2.ListOperationsResponse:
                Response message for ``ListOperations`` method.
        """
        # Create or coerce a protobuf request object.
        # The request isn't a proto-plus wrapped type,
        # so it must be constructed via keyword expansion.
        if isinstance(request, dict):
            request = operations_pb2.ListOperationsRequest(**request)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self.transport._wrapped_methods[self._client._transport.list_operations]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("name", request.name),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def get_operation(
        self,
        request: Optional[operations_pb2.GetOperationRequest] = None,
        *,
        retry: OptionalRetry = gapic_v1.method.DEFAULT,
        timeout: Union[float, object] = gapic_v1.method.DEFAULT,
        metadata: Sequence[Tuple[str, Union[str, bytes]]] = (),
    ) -> operations_pb2.Operation:
        r"""Gets the latest state of a long-running operation.

        Args:
            request (:class:`~.operations_pb2.GetOperationRequest`):
                The request object. Request message for
                `GetOperation` method.
            retry (google.api_core.retry_async.AsyncRetry): Designation of what errors,
                    if any, should be retried.
            timeout (float): The timeout for this request.
            metadata (Sequence[Tuple[str, Union[str, bytes]]]): Key/value pairs which should be
                sent along with the request as metadata. Normally, each value must be of type `str`,
                but for metadata keys ending with the suffix `-bin`, the corresponding values must
                be of type `bytes`.
        Returns:
            ~.operations_pb2.Operation:
                An ``Operation`` object.
        """
        # Create or coerce a protobuf request object.
        # The request isn't a proto-plus wrapped type,
        # so it must be constructed via keyword expansion.
        if isinstance(request, dict):
            request = operations_pb2.GetOperationRequest(**request)

        # Wrap the RPC method; this adds retry and timeout information,
        # and friendly error handling.
        rpc = self.transport._wrapped_methods[self._client._transport.get_operation]

        # Certain fields should be provided within the metadata header;
        # add these here.
        metadata = tuple(metadata) + (
            gapic_v1.routing_header.to_grpc_metadata((("name", request.name),)),
        )

        # Validate the universe domain.
        self._client._validate_universe_domain()

        # Send the request.
        response = await rpc(
            request,
            retry=retry,
            timeout=timeout,
            metadata=metadata,
        )

        # Done; return the response.
        return response

    async def __aenter__(self) -> "GenerativeServiceAsyncClient":
        return self

    async def __aexit__(self, exc_type, exc, tb):
        await self.transport.close()


DEFAULT_CLIENT_INFO = gapic_v1.client_info.ClientInfo(
    gapic_version=package_version.__version__
)

if hasattr(DEFAULT_CLIENT_INFO, "protobuf_runtime_version"):  # pragma: NO COVER
    DEFAULT_CLIENT_INFO.protobuf_runtime_version = google.protobuf.__version__


__all__ = ("GenerativeServiceAsyncClient",)
